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An Introduction to Deep Learning Research for Alzheimer’s Disease

机译:Alzheimer疾病深入学习研究介绍

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This tutorial explains the evolving approaches on deep learning (DL) modeling and their dependence on statistically comprehensive datasets as input in various brain scan neuroimages. Powerful visual modalities, e.g., magnetic resonance images and positron emission tomography, can show neural changes during Alzheimer's disease (AD) development. Computer vision's recent success has lent impetus to numerous DL modeling publications reporting accuracy above 90%, using AD NeuroImage (ADNI) datasets. However, several limitations exist when using DL for AD image interpretation. Due to the lack of a comprehensive dataset and medical images' complexity, there is little to no clinical value in such DL approaches. Furthermore, many of the published research results in the field are not comparable in experimenting with the ADNI datasets without well-accepted evaluation criteria. This tutorial describes the fundamentals and gaps in applying DL methodology over ADNI datasets.
机译:本教程介绍了深度学习(DL)建模的不断发展的方法及其对统计上综合数据集的依赖,如各种脑扫描神经视线处的输入。强大的视觉模式,例如磁共振图像和正电子发射断层扫描,可以在阿尔茨海默病(AD)发展中显示神经变化。计算机愿景最近的成功使得使用AD NeuroImage(ADNI)数据集在90%以上的DIL建模出版物的许多DL建模出版物的推动力。但是,使用DL以进行广告图像解释时存在若干限制。由于缺乏全面的数据集和医学图像的复杂性,在这种DL方法中几乎没有临床价值。此外,该领域的许多公布的研究结果在没有接受的评估标准的情况下对ADNI数据集进行实验并不相当。本教程描述了在ADNI数据集中应用DL方法的基础和空隙。

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